#' @templateVar class cv.glmnet
#' @template title_desc_tidy
#'
#' @param x A `cv.glmnet` object returned from [glmnet::cv.glmnet()].
#' @template param_unused_dots
#'
#' @evalRd return_tidy(
#'   "lambda",
#'   "std.error",
#'   "nzero",
#'   conf.low = "lower bound on confidence interval for cross-validation
#'     estimated loss.",
#'   conf.high = "upper bound on confidence interval for cross-validation
#'     estimated loss.",
#'   estimate = "Median loss across all cross-validation folds for a given
#'     lamdba"
#' )
#'
#' @examples
#' 
#' if (requireNamespace("glmnet", quietly = TRUE)) {
#'
#' library(glmnet)
#' set.seed(27)
#'
#' nobs <- 100
#' nvar <- 50
#' real <- 5
#'
#' x <- matrix(rnorm(nobs * nvar), nobs, nvar)
#' beta <- c(rnorm(real, 0, 1), rep(0, nvar - real))
#' y <- c(t(beta) %*% t(x)) + rnorm(nvar, sd = 3)
#'
#' cvfit1 <- cv.glmnet(x, y)
#'
#' tidy(cvfit1)
#' glance(cvfit1)
#'
#' library(ggplot2)
#' tidied_cv <- tidy(cvfit1)
#' glance_cv <- glance(cvfit1)
#'
#' # plot of MSE as a function of lambda
#' g <- ggplot(tidied_cv, aes(lambda, estimate)) +
#'   geom_line() +
#'   scale_x_log10()
#' g
#'
#' # plot of MSE as a function of lambda with confidence ribbon
#' g <- g + geom_ribbon(aes(ymin = conf.low, ymax = conf.high), alpha = .25)
#' g
#'
#' # plot of MSE as a function of lambda with confidence ribbon and choices
#' # of minimum lambda marked
#' g <- g +
#'   geom_vline(xintercept = glance_cv$lambda.min) +
#'   geom_vline(xintercept = glance_cv$lambda.1se, lty = 2)
#' g
#'
#' # plot of number of zeros for each choice of lambda
#' ggplot(tidied_cv, aes(lambda, nzero)) +
#'   geom_line() +
#'   scale_x_log10()
#'
#' # coefficient plot with min lambda shown
#' tidied <- tidy(cvfit1$glmnet.fit)
#'
#' ggplot(tidied, aes(lambda, estimate, group = term)) +
#'   scale_x_log10() +
#'   geom_line() +
#'   geom_vline(xintercept = glance_cv$lambda.min) +
#'   geom_vline(xintercept = glance_cv$lambda.1se, lty = 2)
#'   
#'  }
#'   
#' @export
#' @family glmnet tidiers
#' @seealso [tidy()], [glmnet::cv.glmnet()]
tidy.cv.glmnet <- function(x, ...) {
  with(
    x,
    tibble(
      lambda = lambda,
      estimate = cvm,
      std.error = cvsd,
      conf.low = cvlo,
      conf.high = cvup,
      nzero = nzero
    )
  )
}

#' @templateVar class cv.glmnet
#' @template title_desc_glance
#'
#' @inherit tidy.cv.glmnet params examples
#'
#' @evalRd return_glance("lambda.min", "lambda.1se", "nobs")
#'
#' @export
#' @seealso [glance()], [glmnet::cv.glmnet()]
#' @family glmnet tidiers
glance.cv.glmnet <- function(x, ...) {
  as_glance_tibble(
    lambda.min = x$lambda.min,
    lambda.1se = x$lambda.1se,
    nobs = stats::nobs(x),
    na_types = "rri"
  )
}
